The characteristics of vocal segments in music are an important cue for automatic, content-based music recommendation, especially in the urban genre. In this paper, we investigate the classification of audio segments into singing and rap, using low-level acoustic features and a Bayesian classifier. GMMs are used as parametric clustering method to describe the distribution of the training data. Different low-level audio features features are assessed with regard to their ability to perform this task. Further, we study the influence of the accompaniment music on the performance of the classifier. We find that the performance of the classifier also depends on the background music of the training and testing data. Some features, even if they yi...
Signal processing methods for audio classification and music content analysis are developed in this ...
We examine performance of different classifiers on different audio feature sets to determine the gen...
A central problem in music information retrieval is audio-based music classification. Current music ...
Abstract—Song and music discrimination play a significant role in multimedia applications such as ge...
A sung vocal line is the prominent feature of much popular music. It would be useful to locate the p...
Abstract — Singing voice detection is essential for content-based applications such as those involvi...
Several factors affecting the automatic classification of musical audio signals are examined. Classi...
This thesis focuses on presenting a technique on improving current vocal detection methods. One of t...
Automatic audio categorization has great potential for application in the maintenance and usage of l...
Is it easier to identify musicians by listening to their voices or their music? We show that for a s...
This paper targets on a generalized vocal mode classifier (speech/singing) that works on audio data ...
Abstract We present an algorithm that predicts musical genre and artist from an audio waveform. Our ...
Signal processing methods for audio classification and music content analysis are developed in this ...
Automatic singing detection and singing phoneme recognition are two MIR research topics that have ga...
With the high increase in the availability of digital music, it has become of interest to automatica...
Signal processing methods for audio classification and music content analysis are developed in this ...
We examine performance of different classifiers on different audio feature sets to determine the gen...
A central problem in music information retrieval is audio-based music classification. Current music ...
Abstract—Song and music discrimination play a significant role in multimedia applications such as ge...
A sung vocal line is the prominent feature of much popular music. It would be useful to locate the p...
Abstract — Singing voice detection is essential for content-based applications such as those involvi...
Several factors affecting the automatic classification of musical audio signals are examined. Classi...
This thesis focuses on presenting a technique on improving current vocal detection methods. One of t...
Automatic audio categorization has great potential for application in the maintenance and usage of l...
Is it easier to identify musicians by listening to their voices or their music? We show that for a s...
This paper targets on a generalized vocal mode classifier (speech/singing) that works on audio data ...
Abstract We present an algorithm that predicts musical genre and artist from an audio waveform. Our ...
Signal processing methods for audio classification and music content analysis are developed in this ...
Automatic singing detection and singing phoneme recognition are two MIR research topics that have ga...
With the high increase in the availability of digital music, it has become of interest to automatica...
Signal processing methods for audio classification and music content analysis are developed in this ...
We examine performance of different classifiers on different audio feature sets to determine the gen...
A central problem in music information retrieval is audio-based music classification. Current music ...